1 / 103

Telecommunications Engineering Topic 3: Modulation and FDMA

Telecommunications Engineering Topic 3: Modulation and FDMA. James K Beard, Ph.D. (215) 204-7932 jkbeard@temple.edu http://astro.temple.edu/~jkbeard/. Attendance. Topics. The Survey Homework Problem 3.30, p. 177, Adjacent channel interference

fola
Télécharger la présentation

Telecommunications Engineering Topic 3: Modulation and FDMA

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Telecommunications EngineeringTopic 3: Modulation and FDMA James K Beard, Ph.D. (215) 204-7932 jkbeard@temple.edu http://astro.temple.edu/~jkbeard/ Topic 3

  2. Attendance Topic 3

  3. Topics • The Survey • Homework • Problem 3.30, p. 177, Adjacent channel interference • Problem 3.35 p. 178, look at part (a); part (b) was done in class • Problem 3.36 p. 178, an intermediate difficulty problem in bit error rate using MSK • Topics • Why follow sampling with coding? • Shannon’s information theory Topic 3

  4. Survey Thumbnail • Nine completed surveys • Six incomplete or just looks • Five did not open the survey • Selection biases results? • Only 45% of class gives all results • Other 55% can be best, worst, or more of the same Topic 3

  5. Multiple Choice Questions • All are replies on 1-5 basis • No answers were 1 or 5 • Questions • My background is appropriate • I understand sampled time/frequency domains • I am comfortable with readings and text Topic 3

  6. Multiple Choice Summary Topic 3

  7. Study Difficulties Reported • Problems • 2.5 p. 29 • 2.6 p. 33 • 2.14 p. 67 • 2.20 p. 77 • 2.22 p. 81 • Examples • 2.17 p. 75 • Theme example 1 p. 82 Topic 3

  8. Suggestions • More examples and homework problems worked through – already in progress • Go over more difficult homework problems before they are assigned • Warn and correct wrong answers – AIP • Discuss WHY as well as HOW Topic 3

  9. Survey Summary • Everybody is OK • Based on 40% sample • But, nobody answered 5’s • Need • More coverage of how and why • Fill in for prerequisites Topic 3

  10. Homework • Problem 3.30, p. 177, Adjacent channel interference • Problem 3.35 p. 178, look at part (a); part (b) was done in class • Problem 3.36 p. 178, an intermediate difficulty problem in bit error rate using MSK Topic 3

  11. Problem 3.30 Page 177 • Adjacent channel interference Topic 3

  12. Solution • Power of signal in correct filter • Power of signal in adjacent channel Topic 3

  13. Problem 3.35 p. 178 (a) • Formulas in table 3.4 page 159 • Begin BPSK with • Integrate over Rayleigh distribution Topic 3

  14. Evaluate the Integral • Average BER is • Evaluation of integral is left as ETR Topic 3

  15. Problem 3.36 p. 178 • Use MSK with a BER of 10-4 or better • AWGN • Use Table 3.4 or Figure 3.32, pp. 159-160 • SNR requirement is about 8.3 dB • Rayleigh fading • Use Table 3.4 p. 159 • Solve for SNR of about 34 dB Topic 3

  16. Coding Follows Sampling • Sampling • Simply converts base signal to elementary modulation form • Formatting for performance is left to coding • Coding • Removal of redundancy == source coding • Channel coding == error detection and correction capability added Topic 3

  17. Shannon’s Information Theory • First published in BSTJ article in 1948 • Builds on Nyquist sampling theory • Adds BER concepts to find maximum flow of bits through a channel limited by • Bandwith • SNR • Channel capacity maximum is Topic 3

  18. Other Important Results • Channel-coding theorem • Given • A channel capacity CB/S • Channel bit rate less than channel capacity • Then • There exists a coding scheme that achieves an arbitrarily high BER • Rate distortion theory – sampling and data compression losses exempt from channel-coding theorem Topic 3

  19. Concept of Entropy • Definition – Average information content per symbol • Importance • Fundamental limit on average number of bits per source symbol • Channel-coding theorem is stated in terms of entropy Topic 3

  20. Equation for Entropy Topic 3

  21. Study Problems and Reading Assignments • Reading assignments • Read Section 4.6, Cyclic Redundancy Checks • Read Section 4.7, Error-Control Coding • Study examples • Example 4.1 page 197 • Problem 4.1 page 197 Topic 3

  22. Problem 2.4 p. 28 • 4 GHz microwave link • Towers 100 m and 50 m tall, 3 km apart • Midway between, tower 70 m tall • Radius of Fresnel zone, eq. (2.38) p. 27 • Distance d1 = d2 = 1.5 km • Raise both towers Topic 3

  23. Problem 2.5 p. 29 • Similar to 2.4 but LOS is clearly obstructed • Fresnel-Kirchoff diffraction parameter eq. (2.39) is • Diffraction loss is 24 dB • For 400 MHz, v = 1.096, loss = 16 dB Topic 3

  24. Term Projects • Areas for coverage • Propagation and noise • Free space • Urban • Modulation & FDMA • Coding • Demodulation and detection • Will deploy over Blackboard this week Topic 3

  25. Term Project Timeline • First week • Parse and report your understanding • Give estimated parameters including SystemView system clock rate • Second week • Block out SystemView • Signal generator • Modulator • Through mid-April • Flesh out as class topics are presented • Due date TBD Topic 3

  26. EE320 Digital Telecommunications Quiz 1 Report February 21, 2005 Topic 3

  27. The Curve Topic 3

  28. The Answers • See previous lectures/slides • Questions 1, 4 • See Excel spreadsheets • Questions 2, 3, 5 • See Mathcad spreadsheet • Fresnel integrals for diffraction loss Topic 3

  29. Question 2 Topic 3

  30. Question 3 Topic 3

  31. Question 5 Topic 3

  32. The Quiz in the Text (1 of 2) • Question 1 • Text pp 3-5 • Lectures and slides several times • Question 2 • Antenna gain equations (2.2), (2.3) pp 14 • Also equations (2.9), example 2.2, pp 16-17 • Question 3 • Section 2.3.2 and exa,[;e 2.3 pp 24-29 • Two lectures, example worked in class, practice quiz Topic 3

  33. The Quiz in the Text (2 of 2) • Question 4 • Problem 3.30 p. 177 • Given in class • Answer was to give equation that was given in the problem statement • Question 5 • Problem 3.36, given in class • Use table 3.4, figure 3.33, pp. 159-161 Topic 3

  34. EE320 Convolutional Codes James K Beard, Ph.D. Topic 3

  35. Bonus Topic: Gray Codes • Sometimes called reflected codes • Defining property: only one bit changes between sequential codes • Conversion • Binary codes to Gray • Work from LSB up • XOR of bits j and j+1 to get bit j of Gray code • Bit past MSB of binary code is 0 • Gray to binary • Work from MSB down • XOR bits j+1 of binary code and bit j of Gray code to get bit j of binary code • Bit past MSB of binary code is 0 Topic 3

  36. Polynomials Modulo 2 • Definition • Coefficients are ones and zeros • Values of independent variable are one or zero • Result of computation is taken modulo 2 – a one or zero • The theory • Well developed to support many DSP applications • Mathematical theory includes finite fields and other areas Topic 3

  37. Base Concept – Signal Polynomial • Pose data as a bit stream • Characterize data as impulse response of a filter with weights 1 and 0 • Characterize as z transform • Substitute D for 1/z in transfer function • Example • Signal 11011001 • Filter is 1 + (1/z) +(1/z)3+(1/z)4+ (1/z)6 • Signal polynomial is 1 + D + D2+D4+D6 • Signal and filter polynomials provide base method for understanding convolutional codes Topic 3

  38. Base Concept –Modulo 2 Convolutions • Scenario • Bitstream into convolution filter • Filter weights are ones and zeros • Output is taken modulo 2 – i.e. a 1 or 0 • Result: A modulo 2 convolution converts one bit stream into another Topic 3

  39. Benefits of Concept • Convolution is product of polynomials • Conventional multiplication of polynomials is isomorphic to convolution of the sequence of their coefficients • Taking the resulting coefficients modulo 2 presents us with the output of a bitstream into a convolution filter with output modulo 2 • These special polynomials have a highly developed mathematical basis • Implementation in hardware and software is very simple Topic 3

  40. Error-Control Coding • Two categories of channel coding • Forward error-correction (EDAC) • Automatic-repeat request (handshake) • CRC Codes • Hash codes of the message • Error detection, but not correction Topic 3

  41. Topics in Convolutional Codes • The node diagram is a block diagram • Polynomial representations • Represent signals, convolutions and special polynomials and polynomial operations • Give us a simple way to understand and analyze convolutions • Trellis diagrams • Give us a mechanism to represent convolution operations as a finite state machine • Provide a first step in visulaization of the finite state machine • Node diagrams • Provide a simple visualization of the finite state machine • Provide a basis for very simple implementation Topic 3

  42. Convolutional Code Steps • Reduce the message to a bit stream • Operate using modulo-2 convolutions • Convolution filter with short binary mask • Take result modulo 2 • Implemented with one-bit shift registers with multiplexer (see Figure 4.6 p. 196) Topic 3

  43. Path 2 Input 1/z 1/z Path 1 Haykin & Moher Figure 4.6 p. 196 Example 4.1 Page 197 Output Topic 3

  44. Example 4.1 (1 of 4) • Response of Path 1 • Response of Path 2 • Mutiplex the outputs bit by bit • One side output, then the other • Produce a longer bit stream Topic 3

  45. Example 4.1 (2 of 4) • Signal • Message bit stream (10011) • Message as a polynomial • Multiply the message polynomial by the Path 1 and Path 2 filter polynomials • Obtain two bit streams from resulting polynomials • Multiplex (interleave) the results Topic 3

  46. Example 4.1 (3 of 4) • Polynomial multiplication results • Messages • Path 1 (1011111) • Path 2 (1111001) • Multiplexing them (11, 10, 11, 11, 01, 01, 11) Topic 3

  47. Example 4.1 (4 of 4) • Length of coded message is • Twice the order of the product polynomials +1 • 2.(length of message + length of shift registers - 1) = 2.(5 + 3 - 1)=2.7=14 • Shift registers have memory • Simplest way to clear is to feed zeros • Number of clocks is number of stages • Zeros between message words are tail zeros Topic 3

  48. Problem 4.1 • Signal and polynomial 1 • Signal and polynomial 2 • Result Topic 3

  49. Modulo 2 Convolution Diagrams Topic 3

  50. Trellis and State Diagrams • Trellis diagram Figure 4.7 p. 198, and state table 4.2 p. 199 • Horizontal position of node represents time • Top line represents the input • Each row represents a state of the two-path encoder – a finite state machine • Trace paths produced by input 1’s and 0’s • Paths produced by 0’s are solid • Paths produced by 1’s are dotted Topic 3

More Related